论文标题

组织病理学图像增强和分类的统一框架通过生成模型

Unified Framework for Histopathology Image Augmentation and Classification via Generative Models

论文作者

Li, Meng, Li, Chaoyi, Peng, Can, Lovell, Brian C.

论文摘要

由于其出色的性能,深度学习技术已广泛用于组织病理学图像分类。但是,这种成功在很大程度上依赖于大量标记的数据的可用性,这需要域专家进行广泛且昂贵的手动注释。为了应对这一挑战,研究人员最近采用了生成模型来合成数据以进行增强,从而增强了分类模型性能。传统上,这涉及首先生成综合数据,然后使用合成和真实数据训练分类模型,从而产生了两阶段,耗时的工作流程。为了克服这一限制,我们提出了一个创新的统一框架,将数据生成和模型培训阶段集成到统一过程中。我们的方法利用了纯视觉变压器(VIT)的条件生成对抗网络(CGAN)模型同时处理图像合成和分类。将一个额外的分类头纳入了CGAN模型中,以同时对组织病理学图像进行分类。为了提高训练稳定性并提高生成数据的质量,我们介绍了一种有条件的类投影技术,该技术有助于在生成过程中维持班级分离。我们还采用动态多损失加权机制来有效平衡分类任务的损失。此外,我们的选择性增强机制会积极选择最合适的图像以进一步提高性能。关于组织病理学数据集的广泛实验表明,我们的统一合成增强框架始终增强组织病理学图像分类模型的性能。

Deep learning techniques have become widely utilized in histopathology image classification due to their superior performance. However, this success heavily relies on the availability of substantial labeled data, which necessitates extensive and costly manual annotation by domain experts. To address this challenge, researchers have recently employed generative models to synthesize data for augmentation, thereby enhancing classification model performance. Traditionally, this involves generating synthetic data first and then training the classification model with both synthetic and real data, which creates a two-stage, time-consuming workflow. To overcome this limitation, we propose an innovative unified framework that integrates the data generation and model training stages into a unified process. Our approach utilizes a pure Vision Transformer (ViT)-based conditional Generative Adversarial Network (cGAN) model to simultaneously handle both image synthesis and classification. An additional classification head is incorporated into the cGAN model to enable simultaneous classification of histopathology images. To improve training stability and enhance the quality of generated data, we introduce a conditional class projection technique that helps maintain class separation during the generation process. We also employ a dynamic multi-loss weighting mechanism to effectively balance the losses of the classification tasks. Furthermore, our selective augmentation mechanism actively selects the most suitable generated images for data augmentation to further improve performance. Extensive experiments on histopathology datasets show that our unified synthetic augmentation framework consistently enhances the performance of histopathology image classification models.

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